通过胶囊网络进行基于视频的欺骗检测,并辅以渠道关注和监督对比学习

Shuai Gao;Lin Chen;Yuancheng Fang;Shengbing Xiao;Hui Li;Xuezhi Yang;Rencheng Song
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引用次数: 0

摘要

欺骗检测对于保护公众利益和维护社会秩序至关重要。它在各个领域的应用有助于建立一个更加安全和可信的社会环境。本研究聚焦于视频中的欺骗检测问题,提出了一种基于胶囊网络的视觉欺骗检测方法(DDCapsNet)。DDCapsNet 模型通过通道注意机制,利用面部表情特征和基于视频的心率特征的融合来预测欺骗分类。为了增强 DDCapsNet 的泛化能力,还进一步引入了有监督的对比学习。我们分别在自收集的数据集(生理辅助视觉欺骗检测数据集,PV3D)和公开的谎言袋(BOL)数据集上对所提出的模型进行了评估。结果表明,DDCapsNet优于单模态系统和其他最先进的(SOTA)方法,其中在PV3D数据集上的ACC达到77.97%,AUC达到78.45%;在BOL数据集上的ACC达到73.19%,AUC达到72.78%。
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Video-Based Deception Detection via Capsule Network With Channel-Wise Attention and Supervised Contrastive Learning
Deception detection is essential for protecting the public interest and maintaining social order. Its application in various fields helps to establish a safer and trustworthy social environment. This study focuses on the problem of deception detection in videos and proposes a visual deception detection method based on a capsule network (DDCapsNet). The DDCapsNet model predicts deception classification using the fusion of facial expression features and video-based heart rate feature via a channel attention mechanism. Supervised contrastive learning is further introduced to enhance the generalization ability of the DDCapsNet. The proposed model is evaluated on a self-collected dataset (physiological-assisted visual deception detection dataset, PV3D) and the public Bag-of-Lies (BOL) dataset, respectively. The results show that DDCapsNet outperforms the unimodal system and other state-of-the-art (SOTA) methods, where the ACC reaches 77.97% and the AUC reaches 78.45% on PV3D, and the ACC reaches 73.19% and the AUC reaches 72.78% on BOL dataset.
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